Mechanism of New Antiviral Drug Class Identified Using "Magnetic Tweezers"

Schematic of the 'magnetic tweezers' used to assay the activity of a virus RNA polymerase (PV RdRp) enzyme in the presence of antiviral drugs. Researchers can monitor hundreds of individual enzymes as they replicate a strand of RNA that is attached to a magnetic bead allowing them to gather data on the mechanism of action of antiviral drugs. Credit: Penn State

New research shows that a new class of antiviral drugs works by causing the virus' replication machinery to pause and backtrack, preventing the virus from efficiently replicating. This discovery, made possible by a high-throughput experimental technique called "magnetic tweezers," could speed the development and approval of related antiviral drugs. A paper describing the research by an international collaboration of scientists from Penn State University, Delft University of Technology in the Netherlands, Friedrich-Alexander University in Germany, and the University of Minnesota, appears October 24, 2017 in the journal Cell Reports.

"Viruses are a massive threat to global public health," said Craig Cameron, professor and holder of the Eberly Family Chair in Biochemistry and Molecular Biology at Penn State and an author of the paper. "Developing broad-spectrum antiviral drugs -- ones that are effective against many different viruses -- is vital to our ability to prevent or respond to outbreaks. We were able to demonstrate the mechanism of a newly developed class of antiviral drugs that are potentially broad spectrum."

Essentially all viruses, whose genomes are composed of RNA rather than DNA, use an enzyme called RNA-dependent RNA polymerase to express genes and replicate their genome in order to make new copies of themselves. The polymerase enzyme is therefore an attractive target for developing broad-spectrum antivirals.

"In order to make more viruses, the RNA polymerase enzyme replicates the virus genome by incorporating nucleotides -- the building blocks of RNA or DNA, which are made up of a base and a sugar -- one at a time," said Jamie J. Arnold, an associate research professor at Penn State and another author of the paper. "For many antiviral drugs, alternative versions of these building blocks are designed such that when they are incorporated during replication, they somehow disrupt the process. To understand the disruption mechanism, we used magnetic tweezers that allowed us to monitor the progression of hundreds of individual RNA polymerase enzymes during the replication process in the presence of antiviral drugs."

The magnetic tweezers work by tethering one end of hundreds of individual strands of RNA to a surface and attaching a magnetic bead to the other end. A magnet then holds the strands vertically while the researchers monitor the beads under a microscope. As the RNA polymerase builds new RNA, the length of the strand changes, moving the bead up or down. Because they can monitor hundreds of these processes simultaneously, the researchers are able to build datasets and develop sound statistical backing for their observations.

"We were particularly interested in an antiviral called T-1106," said Cameron. "It is related to Favipiravir, which was recently approved in Japan for use in the treatment of influenza, but the mechanism was unknown. We were able to show that these antivirals -- a new class that alters the base of the RNA building block, rather than the sugar -- work in a new way. Unlike other known antivirals that either incorporate mutations into the replication process or stop it completely, this new class works by causing the RNA polymerase enzyme to pause and backtrack. With this understanding, we can begin to fine tune the design of these antivirals and speed up the process of getting them approved."

This article has been republished from materials provided by Penn State. Note: material may have been edited for length and content. For further information, please contact the cited source.

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